Leveraging PyCaret for Time Series Analysis-A Low Code Approach

Authors

  • Karthika Gopalakrishnan Data Scientist, USA.  Author

DOI:

https://doi.org/10.47363/JAICC/2023(2)314

Keywords:

PyCaret, Time Series, Banking Industry, Credit Risk Assessment, Fraud Detection, Machine Learning Automation

Abstract

Time series analysis is a fundamental task in various domains, ranging from finance to healthcare and beyond. Traditional methods for time series analysis often require significant manual effort and expertise. PyCaret, a low-code machine learning library, offers a simplified approach to time series analysis, enabling practitioners to build robust models with minimal code. In this paper, we delve into PyCaret’s capabilities for time series analysis, exploring its methods and comparing them with traditional Python packages. Through examples and case studies, we demonstrate how PyCaret streamlines the time series analysis workflow, making it accessible to a broader audience.

Author Biography

  • Karthika Gopalakrishnan, Data Scientist, USA. 

    Karthika Gopalakrishnan, Data Scientist, USA. 

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Published

2023-09-29

How to Cite

Leveraging PyCaret for Time Series Analysis-A Low Code Approach. (2023). Journal of Artificial Intelligence & Cloud Computing, 2(3), 1-4. https://doi.org/10.47363/JAICC/2023(2)314

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